We address the problem of semi-supervised learning in relational networks, networks in which nodes are entities and links are the relationships or interactions between them. Typically this problem is confounded with the problem of graph-based semi-supervised learning (GSSL), because both problems represent the data as a graph and predict the missing class labels of nodes. However, not all graphs are created equally. In GSSL a graph is constructed, often from independent data, based on similarity. As such, edges tend to connect instances with the same class label. Relational networks, however, can be more heterogeneous and edges do not always indicate similarity. For instance, instead of links being more likely to connect nodes with the same...
This work addresses graph-based semi-supervised classification and betweenness computation in large,...
Abstract—Many information tasks involve objects that are explicitly or implicitly connected in a net...
MasterWe present a semi-supervised learning algorithm based on local and global consistency, working...
This paper is about using multiple types of information for classification of networked data in a se...
Relational classification on a single connected network has been of particular interest in the machi...
The influence of network construction on graphbased semi-supervised learning (SSL) and their related...
We address the problem of multi-label classification of relational graphs by proposing a framework t...
Graph-based Semi-Supervised Learning (SSL) aims to transfer the labels of a handful of labeled data ...
Many real-world domains are relational, consisting of objects (e.g., users and papers) linked to eac...
Graph-based Semi-Supervised Learning (SSL) aims to transfer the labels of a handful of labeled data ...
The volume of data generated by internet and social networks is increasing every day, and there is a...
In a traditional machine learning task, the goal is training a classifier using only labeled data (d...
Recent years have witnessed a rise in real-world data captured with rich structural information that...
Real-world data entities are often connected by meaningful relationships, forming large-scale networ...
Recent studies have shown that graph-based approaches are effective for semi-supervised learning. Th...
This work addresses graph-based semi-supervised classification and betweenness computation in large,...
Abstract—Many information tasks involve objects that are explicitly or implicitly connected in a net...
MasterWe present a semi-supervised learning algorithm based on local and global consistency, working...
This paper is about using multiple types of information for classification of networked data in a se...
Relational classification on a single connected network has been of particular interest in the machi...
The influence of network construction on graphbased semi-supervised learning (SSL) and their related...
We address the problem of multi-label classification of relational graphs by proposing a framework t...
Graph-based Semi-Supervised Learning (SSL) aims to transfer the labels of a handful of labeled data ...
Many real-world domains are relational, consisting of objects (e.g., users and papers) linked to eac...
Graph-based Semi-Supervised Learning (SSL) aims to transfer the labels of a handful of labeled data ...
The volume of data generated by internet and social networks is increasing every day, and there is a...
In a traditional machine learning task, the goal is training a classifier using only labeled data (d...
Recent years have witnessed a rise in real-world data captured with rich structural information that...
Real-world data entities are often connected by meaningful relationships, forming large-scale networ...
Recent studies have shown that graph-based approaches are effective for semi-supervised learning. Th...
This work addresses graph-based semi-supervised classification and betweenness computation in large,...
Abstract—Many information tasks involve objects that are explicitly or implicitly connected in a net...
MasterWe present a semi-supervised learning algorithm based on local and global consistency, working...